Integrating real-world data from Brazil and Pakistan into the OMOP common data model and standardized health analytics framework to characterize COVID-19 in the Global South

Author:

Junior Elzo Pereira Pinto1ORCID,Normando Priscilla1,Flores-Ortiz Renzo1,Afzal Muhammad Usman2,Jamil Muhammad Asaad2,Bertolin Sergio Fernandez3,Oliveira Vinícius de Araújo1,Martufi Valentina1,de Sousa Fernanda1,Bashir Amir2,Burn Edward4ORCID,Ichihara Maria Yury1,Barreto Maurício L1ORCID,Salles Talita Duarte3ORCID,Prieto-Alhambra Daniel4ORCID,Hafeez Haroon2,Khalid Sara4ORCID

Affiliation:

1. Center of Data and Knowledge Integration for Health (Cidacs), Fiocruz—Brazil, Parque Tecnológico da Edf, Tecnocentro, R. Mundo , Salvador, BA 41745-715, Brazil

2. Shaukat Khanum Memorial Cancer Hospital and Research Centre , Johar Town, Lahore, 54840, Pakistan

3. Fundació Institut, Universitari per a la recerca a l’Atenció Primària de Salut Jordi Gol i Gurina (IDIAPJGol) , Barcelona, 587 08007, Spain

4. Centre for Statistics in Medicine, Botnar Research Centre, University of Oxford , Oxford, OX3 7LD, United Kingdom

Abstract

Abstract Objectives The aim of this work is to demonstrate the use of a standardized health informatics framework to generate reliable and reproducible real-world evidence from Latin America and South Asia towards characterizing coronavirus disease 2019 (COVID-19) in the Global South. Materials and Methods Patient-level COVID-19 records collected in a patient self-reported notification system, hospital in-patient and out-patient records, and community diagnostic labs were harmonized to the Observational Medical Outcomes Partnership common data model and analyzed using a federated network analytics framework. Clinical characteristics of individuals tested for, diagnosed with or tested positive for, hospitalized with, admitted to intensive care unit with, or dying with COVID-19 were estimated. Results Two COVID-19 databases covering 8.3 million people from Pakistan and 2.6 million people from Bahia, Brazil were analyzed. 109 504 (Pakistan) and 921 (Brazil) medical concepts were harmonized to Observational Medical Outcomes Partnership common data model. In total, 341 505 (4.1%) people in the Pakistan dataset and 1 312 832 (49.2%) people in the Brazilian dataset were tested for COVID-19 between January 1, 2020 and April 20, 2022, with a median [IQR] age of 36 [25, 76] and 38 (27, 50); 40.3% and 56.5% were female in Pakistan and Brazil, respectively. 1.2% percent individuals in the Pakistan dataset had Afghan ethnicity. In Brazil, 52.3% had mixed ethnicity. In agreement with international findings, COVID-19 outcomes were more severe in men, elderly, and those with underlying health conditions. Conclusions COVID-19 data from 2 large countries in the Global South were harmonized and analyzed using a standardized health informatics framework developed by an international community of health informaticians. This proof-of-concept study demonstrates a potential open science framework for global knowledge mobilization and clinical translation for timely response to healthcare needs in pandemics and beyond.

Funder

Bill & Melinda Gates Foundation

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

Reference36 articles.

1. Ethnicity and COVID-19: an urgent public health research priority;Pareek;Lancet,2020

2. Informatics is a critical strategy in combating the COVID-19 pandemic;Bakken;J Am Med Inform Assoc,2020

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